fbpx
Wikipedia

Ronald J. Williams

Ronald J. Williams is professor of computer science at Northeastern University, and one of the pioneers of neural networks. He co-authored a paper on the backpropagation algorithm which triggered a boom in neural network research.[1] He also made fundamental contributions to the fields of recurrent neural networks[2][3] and reinforcement learning.[4] Together with Wenxu Tong and Mary Jo Ondrechen he developed Partial Order Optimum Likelihood (POOL), a machine learning method used in the prediction of active amino acids in protein structures. POOL is a maximum likelihood method with a monotonicity constraint and is a general predictor of properties that depend monotonically on the input features.[5]

References edit

  1. ^ David E. Rumelhart, Geoffrey E. Hinton und Ronald J. Williams. Learning representations by back-propagating errors., Nature (London) 323, S. 533-536
  2. ^ Williams, R. J. and Zipser, D. (1989). A learning algorithm for continually running fully recurrent neural networks. Neural Computation, 1, 270-280.
  3. ^ R. J. Williams and D. Zipser. Gradient-based learning algorithms for recurrent networks and their computational complexity. In Back-propagation: Theory, Architectures and Applications. Hillsdale, NJ: Erlbaum, 1994.
  4. ^ Williams, R. J. (1992). Simple statistical gradient-following algorithms for connectionist reinforcement learning. Machine Learning, 8, 229-256.
  5. ^ W. Tong, Y. Wei, L.F. Murga, M.J. Ondrechen, and R.J. Williams (2009). Partial Order Optimum Likelihood (POOL): Maximum Likelihood Prediction of Active Site Residues Using 3D Structure and Sequence Properties. PLoS Computational Biology, 5(1): e1000266.

External links edit

  • Home page of Ronald J. Williams

ronald, williams, professor, computer, science, northeastern, university, pioneers, neural, networks, authored, paper, backpropagation, algorithm, which, triggered, boom, neural, network, research, also, made, fundamental, contributions, fields, recurrent, neu. Ronald J Williams is professor of computer science at Northeastern University and one of the pioneers of neural networks He co authored a paper on the backpropagation algorithm which triggered a boom in neural network research 1 He also made fundamental contributions to the fields of recurrent neural networks 2 3 and reinforcement learning 4 Together with Wenxu Tong and Mary Jo Ondrechen he developed Partial Order Optimum Likelihood POOL a machine learning method used in the prediction of active amino acids in protein structures POOL is a maximum likelihood method with a monotonicity constraint and is a general predictor of properties that depend monotonically on the input features 5 References edit David E Rumelhart Geoffrey E Hinton und Ronald J Williams Learning representations by back propagating errors Nature London 323 S 533 536 Williams R J and Zipser D 1989 A learning algorithm for continually running fully recurrent neural networks Neural Computation 1 270 280 R J Williams and D Zipser Gradient based learning algorithms for recurrent networks and their computational complexity In Back propagation Theory Architectures and Applications Hillsdale NJ Erlbaum 1994 Williams R J 1992 Simple statistical gradient following algorithms for connectionist reinforcement learning Machine Learning 8 229 256 W Tong Y Wei L F Murga M J Ondrechen and R J Williams 2009 Partial Order Optimum Likelihood POOL Maximum Likelihood Prediction of Active Site Residues Using 3D Structure and Sequence Properties PLoS Computational Biology 5 1 e1000266 External links editHome page of Ronald J Williams Retrieved from https en wikipedia org w index php title Ronald J Williams amp oldid 1178415207, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.